Examining the challenges and optimization techniques for implementing machine learning algorithms in distributed environments, with a focus on enhancing efficiency and reducing processing time

نمایش چکیده اصلی

Examining the challenges and optimization techniques for implementing machine learning algorithms in distributed environments, with a focus on enhancing efficiency and reducing processing time

سمیه رضایی1

1) Continuous Bachelor of Computer Engineering, Azad University, Rodhan Branch

محل انتشار : اولین کنفرانس بین المللی رویکردهای نوین در مهندسی و علوم پایه(icnabs.ir)
چکیده :
Implementing machine learning algorithms in distributed environments comes with multiple challenges. One of the most significant challenges is the coordination and synchronization of data in real-time, which can lead to substantial processing delays. Additionally, issues related to scalability and the need for high computational resources can hinder system performance optimization. In this context, the appropriate selection of communication protocols and distributed architectures is crucial for reducing network load and enhancing processing speed. To improve efficiency and reduce processing time, various techniques can be employed. The use of optimized machine learning algorithms specifically designed for distributed environments can help decrease computational time. Furthermore, load balancing techniques and parallel processing can contribute to overall system performance improvement and resource efficiency. Finally, thorough data analysis and reducing model complexity through feature selection methods can expedite learning and decision-making processes in these environments.
کلمات کلیدی : Distributed Machine Learning, Data Coordination, Data Synchronization, Processing Delay